How Machine Learning is Transforming Clinical Decision Support Tools
With the right data, integration methods, and personnel in place, machine learning has the potential to advance clinical decision support and help providers deliver optimal care. In the era of value-based healthcare, digital innovation, and big data, clinical decision support systems have become vital for organizations seeking to improve care delivery. Clinical decision support (CDS) tools have the ability to analyze large volumes of data and suggest next steps for treatment, flagging potential problems and enhancing care team efficiency. While these systems can add significant value to the healthcare industry, CDS technologies have also come with substantial challenges. Poorly implemented CDS tools that generate unnecessary alerts often result in alarm fatigue and clinician burnout, trends that can threaten patient safety and lead to worse outcomes.
Make faster decisions with community advice
- AI Gets Better At Writing Patient Histories When Physicians Engineer The Prompts
- New Study Evaluates Virtual Reality to Reduce Scanxiety in Brain Tumor Patients
- Revolutionizing Healthcare: Harnessing the Power of IoT Solutions for Improved Patient Outcomes
- Carrum Health Raises $45 Million Series B to Expand Cancer Care Offerings and Launch New Service Lines
- Ethical Guardrails Are Essential To Making Generative AI Work For Healthcare
Deploy this technology today
-
nQ Cortex
Matched with Medical Subject Headings (MeSH): Biomedical Technology, Healthcare IT News: Artificial Intelligence
- NLabviva Platform
- Labviva Platform
- AI Dermatologist Platform
- Armis Platform for Healthcare